Seifi Mozhdeh, Denis Loic, Fournier Corinne
J Opt Soc Am A Opt Image Sci Vis. 2013 Nov 1;30(11):2216-24. doi: 10.1364/JOSAA.30.002216.
Pattern recognition methods can be used in the context of digital holography to perform the task of object detection, classification, and position extraction directly from the hologram rather than from the reconstructed optical field. These approaches may exploit the differences between the holographic signatures of objects coming from distinct object classes and/or different depth positions. Direct matching of diffraction patterns, however, becomes computationally intractable with increasing variability of objects due to the very high dimensionality of the dictionary of all reference diffraction patterns. We show that most of the diffraction pattern variability can be captured in a lower dimensional space. Good performance for object recognition and localization is demonstrated at a reduced computational cost using a low-dimensional dictionary. The principle of the method is illustrated on a digit recognition problem and on a video of experimental holograms of particles.
模式识别方法可用于数字全息术的背景下,直接从全息图而非重建的光场执行目标检测、分类和位置提取任务。这些方法可以利用来自不同物体类别和/或不同深度位置的物体全息特征之间的差异。然而,由于所有参考衍射图案字典的维度非常高,随着物体变异性的增加,衍射图案的直接匹配在计算上变得难以处理。我们表明,大部分衍射图案变异性可以在低维空间中捕获。使用低维字典以降低的计算成本展示了目标识别和定位的良好性能。该方法的原理在数字识别问题和粒子实验全息图视频上进行了说明。